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Passenger Flow Forecast of Urban Rail Transit Based on BP Neural Networks

机译:基于BP神经网络的城市轨道交通客流预测。

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Firstly, according to the Beijing urban rail transit network characteristics and based on the data of the historical passenger flow, the passenger flow in sections is distributed and the referenced passenger flow in sections is gotten on the theoretical basis of the shortest path distribution of static unbalanced distribution model. Then through a lot of BP neural network modeling experiments, a reasonable prediction model is established to aim at Beijing urban rail transit passenger flow forecast problem. Finally, through using the BP neural network model, transfer passenger flow in sections is predicted from Fuxingmen to Fuchengmen station on Beijing urban rail transit Line 2 and reasonable passenger flow forecast results are gotten to prepare for passenger traffic scheduling system research.
机译:首先,根据北京城市轨道交通网络的特点,根据历史客流数据,对区间客流进行分布,并在静态不平衡最短路径分布的理论基础上得到区间客流的参考。分布模型。然后通过大量的BP神经网络建模实验,针对北京城市轨道交通客流预测问题建立了合理的预测模型。最后,利用BP神经网络模型,对北京城市轨道交通2号线复兴门至复兴门站区间分段客流进行了预测,并获得了合理的客流预测结果,为客流调度系统研究做准备。

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